scholarly journals An X-ray CAD system with ribcage suppression for improved detection of lung lesions

2013 ◽  
Vol 57 (1) ◽  
pp. 19 ◽  
Author(s):  
Áron Horváth ◽  
Gergely Orbán ◽  
Ákos Horváth ◽  
Gábor Horváth
Keyword(s):  
X Ray ◽  
Author(s):  
J. Juditha Mercina ◽  
J. Madhumathi ◽  
V. Priyanga ◽  
M. Deva Priya

Lungs play an important role in human respiratory system. There are diseases that affect the functioning of lungs. To analyse lung diseases in the chest region using X-ray based Computer-Aided Diagnosis (CAD) system, it is necessary to determine the lung regions subject to analysis. In this paper, an intelligent system is proposed for lung disease detection. In this paper, Interstitial Lung Disease (ILD) patterns are classified using Convolutional Neural Networks (CNN). The proposed system involves five convolutional layers and three dense layers. The performance of the classification demonstrates the potential of CNN in analysing lung patterns.


Author(s):  
Hiroshi Emoto ◽  
Shinji Yamamoto ◽  
Mitsuomi Matsumoto ◽  
Toru Matsumoto ◽  
Yukio Tateno ◽  
...  

Author(s):  
Mugahed A. Al-antari ◽  
Cam-Hao Hua ◽  
Sungyoung Lee

Abstract Background and Objective: The novel coronavirus 2019 (COVID-19) is a harmful lung disease that rapidly attacks people worldwide. At the end of 2019, COVID-19 was discovered as mysterious lung disease in Wuhan, Hubei province of China. World health organization (WHO) declared the coronavirus outbreak a pandemic in the second week of March 2020. Simultaneous deep learning detection and classification of COVID-19 from the entire digital X-ray images is the key to efficiently assist patients and physicians for a fast and accurate diagnosis.Methods: In this paper, a deep learning computer-aided diagnosis (CAD) based on the YOLO predictor is proposed to simultaneously detect and diagnose COVID-19 among the other eight lung diseases: Atelectasis, Infiltration, Pneumothorax, Mass, Effusion, Pneumonia, Cardiomegaly, and Nodule. The proposed CAD system is assessed via five-fold tests for multi-class prediction problem using two different databases of chest X-ray images: COVID-19 and ChestX-ray8. The proposed CAD system is trained using an annotated training set of 50,490 chest X-ray images.Results: The suspicious regions of COVID-19 from the entire X-ray images are simultaneously detected and classified end-to-end via the proposed CAD predictor achieving overall detection and classification accuracies of 96.31% and 97.40%, respectively. The most testing images of COVID-19 and other lunge diseases are correctly predicted achieving intersection over union (IoU) with their GTs greater than 90%. Applying deep learning regularizers of data balancing and augmentation improve the diagnostic performance by 6.64% and 12.17% in terms of overall accuracy and F1-score, respectively. Meanwhile, the proposed CAD system presents its feasibility to diagnose the individual chest X-ray image within 0.009 second. Thus, the presented CAD system could predict 108 frames/second (FPS) at the real-time of prediction.Conclusion: The proposed deep learning CAD system shows its capability and reliability to achieve promising COVID-19 diagnostic performance among all other lung diseases. The proposed deep learning model seems reliable to assist health care systems, patients, and physicians in their practical validations.


2021 ◽  
Vol 67 (5) ◽  
pp. 707-712
Author(s):  
Ivetta Dvorakovskaia ◽  
Andrey Ilin ◽  
Dali Dzadzua ◽  
Boris Ariel ◽  
Sergey Dvoretskii ◽  
...  

Clinical cases of uterine leiomyoma with secondary lung involvement are described. The results of X-ray, computerized tomography, and histological examination of lung specimens, as well as those of heterozygosity and microsatellite instability are presented. Our own experience and the few descriptions available to date  in the literature   confirm the  pseudo tumorous nature of benign uterine leiomyoma with lung involvement which should be considered as nodular dyshormonal hyperplasia. The signs of genetic instability ՛s identification do not allow to differentiate clearly between the benign or malignant nature of the disease. The key role in the differential diagnosis of uterine leiomyoma with lung involvement and leiomyosarcoma belongs to unprejudiced clinical observation.


Author(s):  
Inna Stainvas ◽  
Alexandra Manevitch

Computer aided detection (CAD) system for cancer detection from X-ray images is highly requested by radiologists. For CAD systems to be successful, a large amount of data has to be collected. This poses new challenges for developing learning algorithms that are efficient and scalable to large dataset sizes. One way to achieve this efficiency is by using good feature selection.


2020 ◽  
Vol 10 (1) ◽  
Author(s):  
Mizuho Nishio ◽  
Shunjiro Noguchi ◽  
Hidetoshi Matsuo ◽  
Takamichi Murakami

Abstract This study aimed to develop and validate computer-aided diagnosis (CXDx) system for classification between COVID-19 pneumonia, non-COVID-19 pneumonia, and the healthy on chest X-ray (CXR) images. From two public datasets, 1248 CXR images were obtained, which included 215, 533, and 500 CXR images of COVID-19 pneumonia patients, non-COVID-19 pneumonia patients, and the healthy samples, respectively. The proposed CADx system utilized VGG16 as a pre-trained model and combination of conventional method and mixup as data augmentation methods. Other types of pre-trained models were compared with the VGG16-based model. Single type or no data augmentation methods were also evaluated. Splitting of training/validation/test sets was used when building and evaluating the CADx system. Three-category accuracy was evaluated for test set with 125 CXR images. The three-category accuracy of the CAD system was 83.6% between COVID-19 pneumonia, non-COVID-19 pneumonia, and the healthy. Sensitivity for COVID-19 pneumonia was more than 90%. The combination of conventional method and mixup was more useful than single type or no data augmentation method. In conclusion, this study was able to create an accurate CADx system for the 3-category classification. Source code of our CADx system is available as open source for COVID-19 research.


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Mohamed Elsharkawy ◽  
Ahmed Sharafeldeen ◽  
Fatma Taher ◽  
Ahmed Shalaby ◽  
Ahmed Soliman ◽  
...  

AbstractThe primary goal of this manuscript is to develop a computer assisted diagnostic (CAD) system to assess pulmonary function and risk of mortality in patients with coronavirus disease 2019 (COVID-19). The CAD system processes chest X-ray data and provides accurate, objective imaging markers to assist in the determination of patients with a higher risk of death and thus are more likely to require mechanical ventilation and/or more intensive clinical care.To obtain an accurate stochastic model that has the ability to detect the severity of lung infection, we develop a second-order Markov-Gibbs random field (MGRF) invariant under rigid transformation (translation or rotation of the image) as well as scale (i.e., pixel size). The parameters of the MGRF model are learned automatically, given a training set of X-ray images with affected lung regions labeled. An X-ray input to the system undergoes pre-processing to correct for non-uniformity of illumination and to delimit the boundary of the lung, using either a fully-automated segmentation routine or manual delineation provided by the radiologist, prior to the diagnosis. The steps of the proposed methodology are: (i) estimate the Gibbs energy at several different radii to describe the inhomogeneity in lung infection; (ii) compute the cumulative distribution function (CDF) as a new representation to describe the local inhomogeneity in the infected region of lung; and (iii) input the CDFs to a new neural network-based fusion system to determine whether the severity of lung infection is low or high. This approach is tested on 200 clinical X-rays from 200 COVID-19 positive patients, 100 of whom died and 100 who recovered using multiple training/testing processes including leave-one-subject-out (LOSO), tenfold, fourfold, and twofold cross-validation tests. The Gibbs energy for lung pathology was estimated at three concentric rings of increasing radii. The accuracy and Dice similarity coefficient (DSC) of the system steadily improved as the radius increased. The overall CAD system combined the estimated Gibbs energy information from all radii and achieved a sensitivity, specificity, accuracy, and DSC of 100%, 97% ± 3%, 98% ± 2%, and 98% ± 2%, respectively, by twofold cross validation. Alternative classification algorithms, including support vector machine, random forest, naive Bayes classifier, K-nearest neighbors, and decision trees all produced inferior results compared to the proposed neural network used in this CAD system. The experiments demonstrate the feasibility of the proposed system as a novel tool to objectively assess disease severity and predict mortality in COVID-19 patients. The proposed tool can assist physicians to determine which patients might require more intensive clinical care, such a mechanical respiratory support.


Author(s):  
Kalaiselvi V ◽  
John Aravindhar D

Welding is a fabrication of joining materials into one component. Defects are unavoidable during the welding process, and hence the inspection of welds is a most important task in many industries. In this work, a Computer Aided Detection (CAD) system is designed to detect weld defects based on image processing techniques. It is a non-destructive testing which uses X-ray images. The proposed system mainly consists of three stages; gradient image formation, filtration by Gaussian pyramidal filters algorithm and segmentation by Expectation and Maximization (EM) algorithm. In this study, GD X-ray weld image database is used to evaluate the proposed system. The performance analysis of the proposed system is done by measuring the sensitivity, specificity, and accuracy of the segmented image with the help of its corresponding ground truth images.


2019 ◽  
Vol 3 (Supplement_1) ◽  
Author(s):  
Mohammed Saleh ◽  
Charlotte Jenkins

Abstract Introduction Incidental findings on investigations is not uncommon in rheumatology practice. Here such an incidental finding has led to dramatic change in the management of the underlying disease. Case description A 38-year-old gentleman known to have ankylosing spondylitis (AS) since 2008, with radiologically evident sacroilitis on X-ray and MRI, was reviewed routinely in clinic and reported pain and restriction of neck movement and subsequent MRI cervical spine in April 2017 has shown incidental finding of apical fibrosis, but no AS activity. He denied constitutional and respiratory symptoms apart from occasional dry cough. Chest X-ray and high resolution CT scan confirmed the same findings of apical fibrosis in addition to bilateral reticulonodular and fisural changes. Blood tests showed angiotensin converting Eezyme level ACE 65 U/L (normal range 8-65), C-reactive protein <5. Bronchoscopy/biopsy showed non-caseating epitheliod granuloma. ZN stain and culture showed no TB infection. He was reviewed by the respiratory team and felt findings could conceivably fit with sarcoidosis. His dry cough has improved after Benepali was discontinued in June 2017 and no steroids were given. However, had a flare of AS symptoms (ribs and lower back pain and stiffness, right SIJ pain) despite regular etoricoxib and required to start on secukinumab. Discussion Benepali (Etanercept biosimilar) sounds not different from the originator biologic in causing sarcoid-like reactions commonly present as skin rash and lung lesions. Etanercept is associated with a large majority of reported anti-TNF induced sarcoid-like cases, not effective in treating sarcoidosis and may even exacerbate it. However, there are few reports of adalimumab induced sarcoid-like reactions that resolved when treated with etanercept. Paradoxical reaction to one TNF alfa inhibitor does not preclude the use of other TNF blocking agents including etanercept. Key learning points Lung lesions after exposure to anti-TNF warrants investigating a wide range of differential diagnoses. Paradoxical sarcoid-like reactions can occur with anti-TNF treatment and resolves on discounting it. Alternative biologic in ankylosing spondylitis might be a challenge. Conflicts of interest The authors have declared no conflicts of interest.


2001 ◽  
Vol 1230 ◽  
pp. 646-652
Author(s):  
Shinji Yamamoto ◽  
Hotaka Takizawa ◽  
Hao Jiang ◽  
Tohru Nakagawa ◽  
Tohru Matsumoto ◽  
...  

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